Reinforcement learning is an area machine learning and computer science concerned with how to select an action in a state that maximizes a numerical reward in a particular environment.
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Learning of Outcome Space Given Noisy Actions and Non-Monotonic Reinforcment
I'm looking to construct or adapt a model preferably based in RL theory that can solve the following problem. Would greatly appreciate any guidance or pointers.
I have a continuous action space, ...
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43 views
Neural Network for Image Recognization
I am looking for a Neural Net Design suggestion for the following problem statement:-
-There is a bottle in the room.I take the image from a high resolution camera and i need to identify if the bottle ...
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1answer
46 views
Berkeley Pac-Man Project: features divided through by 10
I am busy coding reinforcement learning agents for the game Pac-Man and came across Berkeley's CS course's Pac-Man Projects, specifically the reinforcement learning section.
For the approximate ...
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66 views
SARSA algorithm for average reward problems
My question is about using the SARSA algorithm in reinforcement learning for an undiscounted, continuing (non-episodic) problem (can it be used for such a problem?)
I have been studying the textbook ...
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1answer
68 views
Training Neural Networks with big linear output
I am programming a Feed Forward Neural Network which I want to use in combination with Reinforcement Learning. I have one hidden layer with tanh as activation function and a linear output layer.
I ...
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1answer
83 views
Action constraints in actor-critic reinforcement learning
I've implemented the natural actor-critic RL algorithm on a simple grid world with four possible actions (up,down,left,right), and I've noticed that in some cases it tends to get stuck oscillating ...
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1answer
97 views
Weight update - Reinforcement Learning + Neural Networks
I am currently trying to understand how TD-Gammon works and have two questions:
1) I found an article which explains the weight update. It consists of three part. The last part is an differentiation ...
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1answer
121 views
How to implement Q-learning with a neural network?
I have created a neural network with 2 inputs nodes, 4 hidden nodes and 3 output nodes. The initial weights are random between -1 to 1. I used backpropagation method to update the network with TD ...
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1answer
408 views
Q-Learning in combination with neural-networks (rewarding understanding)
As far as my understanding is, it's possible to replace a look-up-table for Q-values (state-action-pair-evaluation) by a neural network for estimating these state-action pairs. I programmed a small ...
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1answer
94 views
Multi-Criteria Optimization with Reinforcement Learning
I am working on the power management of a system. The objectives that I am looking to minimize are power consumption and average latency. I have a single objective function having the linearly ...
3
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2answers
208 views
Unbounded increase in Q-Value, consequence of recurrent reward after repeating the same action in Q-Learning
I'm in the process of development of a simple Q-Learning implementation over a trivial application, but there's something that keeps puzzling me.
Let's consider the standard formulation of Q-Learning
...
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129 views
Policy iteration on 4x3 grid world
I am supposed to come up with an mdp agent that uses policy iteration and value iteration for an assignment and compare its performance with the utility value of a state.
So how does a mdp agent, ...
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4answers
210 views
Can evolutionary computation be a method of reinforcement learning?
I am working on a project, a simulated robot learns to do something by neuroevolution
So, where is evolutionary computation? Is it a method of reinforcement learning? Or a separate method of machine ...
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100 views
Q(lambda) learning for optimal time-out values
I am working on the power management of a computing board. The boards wakes up periodically and processes some requests and then sent to sleep mode. I have to find a suitable trade-off between the ...
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0answers
441 views
a variation of Windy gridworld game problem in reinforcement learning with my matlab code
In reinforcement learning, a typical example is the windy gridworld
And I face with a new variation of windy gridworld, which additionally has a wall and stochastic wind, I am stuck in these two new ...
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0answers
305 views
A policy iteration problem in reinforcement learning
I have to solve a problem with policy iteration, the model is showed in
and I make a Java program to simulate, the policy algorithm is based on Sutton and Barto's book on Reinforcement learning.
...
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0answers
228 views
PyBrain Reinforcement Learning - Maze and Graph
I was trying to implement in PyBrain something similar to a Maze problem. However, it's more similar to a room with an emergency exit, where you leave an agent in one of the rooms to find the exit.
To ...
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104 views
Ultimate Jedi Challenge - the core - Multiarmed Bandit / Reinforcment Learning / advanced AI with a lightsaber twist (new compact version!) [closed]
Stackoverflow does not render math equations - for proper formatting please see the question at cstheory
Hi, my last question was closed due to lack of conciseness and I have to concur - it was too ...
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78 views
Boltzman exploration with negative rewards to avoid infinite probabilities
In my Q-learning algorithm, rewards are calculated as a cost of immediate power consumption and the latency caused by action. Since the Q-learning looks for minimizing this cost, the assign the ...
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159 views
Ultimate Jedi challenge - Multiarmed Bandit / Reinforcement Learing/ Advanced AI with a lighsaber twist [closed]
This question was orignaly posted on cstheory but I believe the community of stackoverflow can also help. Any inspiration is warmly welcome.
To the point. Imagine a following scenario (Long time ...
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1answer
274 views
Q-learning value update
I am working on the power management of a device using Q-learning algorithm. The device has two power modes, i.e., idle and sleep. When the device is asleep, the requests for processing are buffered ...
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2answers
104 views
Boltzman exploration with more than two actions in Q-learning
I am using Boltzman exploration in Q-learning where I have at least 10 actions in each state. I know that with only two actions, Boltzman exploration can be applied quite simply as follows:
...
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1answer
257 views
Reinforcement learning methodes that map continous to continous
I am building a model where firms have to set prices and make production dicisions. Prices are continous and so are the decision variables. (inventory, last sales, prices...).
What reinforcement ...
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1answer
143 views
Reinforcement Learning - How to get out of 'sticky' states?
The problem:
I've trained an agent to perform a simple task in a grid world (go to the top of the grid while not hitting obstacles), but the following situation always seems to occur. It finds itself ...
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0answers
102 views
Dual optimization with reinforcement learning
I have an objective function having parameters of power consumption (p) and latency (d). I want to minimize the power consumption given a latency constraint (seconds). The optimization problem can be ...
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1answer
274 views
Use of classical back propagation neural network with TD-learning in board game
I want to ask if it is senseful using a standard backpropagation neural network with TD-learning method in a board game?
My method looks like:
Play 1 game. Net is playing as both players with ...
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1answer
103 views
Reinforcement learning for power management
I am working on a power management problem where I control the power management of a computing board based on the occurance of events. I am using Reinforcement learning (the traditional Q-learning) ...
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1answer
518 views
Free Energy Reinforcement Learning Implementation
I've been trying to implement the algorithm described here, and then test it on the "large action task" described in the same paper.
Overview of the algorithm:
In brief, the algorithm uses an RBM ...
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2answers
185 views
Discretization dilema
I am currently working on famous Mountain Car problem from reinforcement learning. This problem is of continuous nature, meaning I have two variables: one position - ranging from -1.2 to 0.5 and ...
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2answers
1k views
Training a Neural Network with Reinforcement learning
I know the basics of feedforward neural networks, and how to train them using the backpropagation algorithm, but I'm looking for an algorithm than I can use for training an ANN online with ...
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1answer
212 views
Updates in Temporal Difference Learning
I read about Tesauro's TD-Gammon program and would love to implement it for tic tac toe, but almost all of the information is inaccessible to me as a high school student because I don't know the ...
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1answer
123 views
book for algorithm
I need to study an algorithm. Currently I am studying. But still I am not able to find explanation and analysis of. Please suggest me a good resource for it.
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2answers
243 views
Neural Network Learning Without Training Values
I am wondering how to go about training a neural network without providing it with training values. My premise for this is that the neural network(s) will be used on a robot that can receive ...
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1answer
97 views
Reinforcement learning of a policy for multiple actors in large state spaces
I have a real-time domain where I need to assign an action to N actors involving moving one of O objects to one of L locations. At each time step, I'm given a reward R, indicating the overall success ...
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2answers
242 views
Reinforcement learning with neo4j: make 2 copies of the graph vs store 2 copies of all values on 1 graph
I'm planning on running a machine learning algorithm that learns node values and edge weights. The algorithm is very similar to the value iteration algorithm here. Each node represents a location and ...
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2answers
183 views
How to use MinMax trees with Q-Learning?
How to use MinMax trees with Q-Learning?
I want to implement a Q-Learning connect four agent and heard that adding MinMax trees into it helps.
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1answer
177 views
Rewards in Q-Learning and in TD(lambda)
How do rewards in those two RL techniques work? I mean, they both improve the policy and the evaluation of it, but not the rewards.
How do I need to guess them from the beginning?
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1answer
315 views
Want to implement a reinforcement learning connect four agent
I want to implement a reinforcement learning connect four agent.
I am unsure how to do so and how it should look. I am familiar with the theoretical aspects of reinforcement learning but don't know ...
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1answer
208 views
Best algorithm for reinforcement learning for a four in a row game
What is the best algorithm for reinforcement learning for a four in a row game.
I want to build a four in a row game that will use one of the RL algorithms to play:
Q-Learning, MinMax etc.
What is ...
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2answers
1k views
C++ Reinforcement Learning Library
I have been looking for a C++ Library that implements Reinforcement Learning Algorithms but was not very satisfied with the results.
I found the Reinforcement Learning Toolbox 2.0 from the TU Graz ...
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1answer
123 views
What is the preferred machine learning technique for building a real-time game player simulator? [closed]
I've set out to build an AI-engine that learns to play Tetris, i.e. an engine that can improve it's performance, perhaps by adjusting its heuristics, and so forth. Let's say that I've got the GUI out ...
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2answers
431 views
What machine learning algorithm should I use for Connect 4?
I have an AI that is good at playing Connect 4 (using minimax). Now I want to use some machine learning algorithm to learn from this AI that I have, and I would like to do that by just letting them ...
2
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1answer
488 views
Reinforcement Learning Beginner Projects [closed]
I once read the book "Reinforcement Learning An Introduction" and found it quite interesting. A lot of time has gone by and I became interested in the topic again.
I would like to try out RL and ...
2
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1answer
323 views
XOR Hebbian test/example neural network
I just finished writing some code that runs a hebbian learning feedforward neural network. I've done a back propagation neural network before and the first thing i did to make sure it worked was too ...
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3answers
240 views
Generalizing Q-learning to work with a continuous *action* space
I'm trying to get an agent to learn the mouse movements necessary to best perform some task in a reinforcement learning setting (i.e. the reward signal is the only feedback for learning).
I'm hoping ...
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3answers
390 views
Are neural networks really abandonware?
I am planning to use neural networks for approximating a value function in a reinforcement learning algorithm. I want to do that to introduce some generalization and flexibility on how I represent ...
5
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1answer
1k views
Reinforcement learning: Differences between QLearning and SarsaTD?
I apologize if the question doesn't fit any programming language specifications.
If it is of real importance, I'm using C++.
I'm comparing learning algorithms, and although I know that Sarsa is ...
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1answer
339 views
How to Learn the Reward Function in a Markov Decision Process
What's the appropriate way to update your R(s) function during Q-learning? For example, say an agent visits state s1 five times, and receives rewards [0,0,1,1,0]. Should I calculate the mean reward, ...
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switching from unclassfied to classfied learning [closed]
I am working on a research-oriented system of collaborating agents
The agents perform many stochastic experiments (thousands per second), interacting with each other, in a complex high-dimension ...
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3answers
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Support Vector Machines — Better than Artificial Neural Networks in which learning situations?
I know SVMs are supposedly 'ANN killers' in that they automatically select representation complexity and find a global optimum (see here for some SVM praising quotes).
But here is where I'm unclear ...

